BT-Net: An end-to-end multi-task architecture for brain tumor classification, segmentation, and localization from MRI images

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS Array Pub Date : 2024-04-23 DOI:10.1016/j.array.2024.100346
Salman Fazle Rabby , Muhammad Abdullah Arafat , Taufiq Hasan
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引用次数: 0

Abstract

Brain tumors are severe medical conditions that can prove fatal if not detected and treated early. Radiologists often use MRI and CT scan imaging to diagnose brain tumors early. However, a shortage of skilled radiologists to analyze medical images can be problematic in low-resource healthcare settings. To overcome this issue, deep learning-based automatic analysis of medical images can be an effective tool for assistive diagnosis. Conventional methods generally focus on developing specialized algorithms to address a single aspect, such as segmentation, classification, or localization of brain tumors. In this work, a novel multi-task network was proposed, modified from the conventional VGG16, along with a U-Net variant concatenation, that can simultaneously achieve segmentation, classification, and localization using the same architecture. We trained the classification branch using the Brain Tumor MRI Dataset, and the segmentation branch using a “Brain Tumor Segmentation dataset. The integration of our method’s output can aid in simultaneous classification, segmentation, and localization of four types of brain tumors in MRI scans. The proposed multi-task framework achieved 97% accuracy in classification and a dice similarity score of 0.86 for segmentation. In addition, the method shows higher computational efficiency compared to existing methods. Our method can be a promising tool for assistive diagnosis in low-resource healthcare settings where skilled radiologists are scarce.

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BT-Net:用于从核磁共振成像图像进行脑肿瘤分类、分割和定位的端到端多任务架构
脑肿瘤是一种严重的内科疾病,如果不及早发现和治疗,可能会致命。放射科医生通常使用核磁共振成像和 CT 扫描成像来早期诊断脑肿瘤。然而,在资源匮乏的医疗环境中,缺乏熟练的放射科医生来分析医学影像可能是个问题。为了克服这一问题,基于深度学习的医学图像自动分析可以成为辅助诊断的有效工具。传统方法一般侧重于开发专门的算法来解决单一方面的问题,如脑肿瘤的分割、分类或定位。在这项工作中,我们提出了一种新颖的多任务网络,它由传统的 VGG16 和 U-Net 变体串联修改而来,可以使用相同的架构同时实现分割、分类和定位。我们使用脑肿瘤核磁共振数据集训练分类分支,使用 "脑肿瘤分割数据集 "训练分割分支。整合我们方法的输出可以帮助同时对核磁共振扫描中的四种脑肿瘤进行分类、分割和定位。所提出的多任务框架的分类准确率达到 97%,分割的骰子相似度得分达到 0.86。此外,与现有方法相比,该方法的计算效率更高。在缺乏熟练放射科医生的低资源医疗环境中,我们的方法是一种很有前途的辅助诊断工具。
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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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